US-GAN: On the importance of Ultimate Skip Connection for Facial Expression Synthesis
Arbish Akram, Nazar Khan
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We demonstrate the benefit of using an ultimate skip (US) connection for facial expression synthesis using generative adversarial networks (GAN). A direct connection transfers identity, facial, and color details from input to output while suppressing artifacts. The intermediate layers can therefore focus on expression generation only. This leads to a light-weight US-GAN model comprised of encoding layers, a single residual block, decoding layers, and an ultimate skip connection from input to output. US-GAN has 3 fewer parameters than state-of-the-art models and is trained on 2 orders of magnitude smaller dataset. It yields 7\% increase in face verification score (FVS) and 27\% decrease in average content distance (ACD). Based on a randomized user-study, US-GAN outperforms the state of the art by 25\% in face realism, 43\% in expression quality, and 58\% in identity preservation.